TY - JOUR
T1 - An introduction to learning algorithms and potential applications in geomorphometry and Earth surface dynamics
AU - Valentine, Andrew
AU - Kalnins, Lara
N1 - Publisher Copyright:
© Author(s) 2016.
PY - 2016/5/30
Y1 - 2016/5/30
N2 - "Learning algorithms" are a class of computational tool designed to infer information from a data set, and then apply that information predictively. They are particularly well suited to complex pattern recognition, or to situations where a mathematical relationship needs to be modelled but where the underlying processes are not well understood, are too expensive to compute, or where signals are over-printed by other effects. If a representative set of examples of the relationship can be constructed, a learning algorithm can assimilate its behaviour, and may then serve as an efficient, approximate computational implementation thereof. A wide range of applications in geomorphometry and Earth surface dynamics may be envisaged, ranging from classification of landforms through to prediction of erosion characteristics given input forces. Here, we provide a practical overview of the various approaches that lie within this general framework, review existing uses in geomorphology and related applications, and discuss some of the factors that determine whether a learning algorithm approach is suited to any given problem.
AB - "Learning algorithms" are a class of computational tool designed to infer information from a data set, and then apply that information predictively. They are particularly well suited to complex pattern recognition, or to situations where a mathematical relationship needs to be modelled but where the underlying processes are not well understood, are too expensive to compute, or where signals are over-printed by other effects. If a representative set of examples of the relationship can be constructed, a learning algorithm can assimilate its behaviour, and may then serve as an efficient, approximate computational implementation thereof. A wide range of applications in geomorphometry and Earth surface dynamics may be envisaged, ranging from classification of landforms through to prediction of erosion characteristics given input forces. Here, we provide a practical overview of the various approaches that lie within this general framework, review existing uses in geomorphology and related applications, and discuss some of the factors that determine whether a learning algorithm approach is suited to any given problem.
UR - http://www.scopus.com/inward/record.url?scp=84973375972&partnerID=8YFLogxK
U2 - 10.5194/esurf-4-445-2016
DO - 10.5194/esurf-4-445-2016
M3 - Article
SN - 2196-6311
VL - 4
SP - 445
EP - 460
JO - Earth Surface Dynamics
JF - Earth Surface Dynamics
IS - 2
ER -